Literature DB >> 27830108

Learning Linear Dynamical Systems from Multivariate Time Series: A Matrix Factorization Based Framework.

Zitao Liu1, Milos Hauskrecht1.   

Abstract

The linear dynamical system (LDS) model is arguably the most commonly used time series model for real-world engineering and financial applications due to its relative simplicity, mathematically predictable behavior, and the fact that exact inference and predictions for the model can be done efficiently. In this work, we propose a new generalized LDS framework, gLDS, for learning LDS models from a collection of multivariate time series (MTS) data based on matrix factorization, which is different from traditional EM learning and spectral learning algorithms. In gLDS, each MTS sequence is factorized as a product of a shared emission matrix and a sequence-specific (hidden) state dynamics, where an individual hidden state sequence is represented with the help of a shared transition matrix. One advantage of our generalized formulation is that various types of constraints can be easily incorporated into the learning process. Furthermore, we propose a novel temporal smoothing regularization approach for learning the LDS model, which stabilizes the model, its learning algorithm and predictions it makes. Experiments on several real-world MTS data show that (1) regular LDS models learned from gLDS are able to achieve better time series predictive performance than other LDS learning algorithms; (2) constraints can be directly integrated into the learning process to achieve special properties such as stability, low-rankness; and (3) the proposed temporal smoothing regularization encourages more stable and accurate predictions.

Entities:  

Year:  2016        PMID: 27830108      PMCID: PMC5098501          DOI: 10.1137/1.9781611974348.91

Source DB:  PubMed          Journal:  Proc SIAM Int Conf Data Min


  5 in total

1.  Learning the parts of objects by non-negative matrix factorization.

Authors:  D D Lee; H S Seung
Journal:  Nature       Date:  1999-10-21       Impact factor: 49.962

2.  A Regularized Linear Dynamical System Framework for Multivariate Time Series Analysis.

Authors:  Zitao Liu; Milos Hauskrecht
Journal:  Proc Conf AAAI Artif Intell       Date:  2015-01

3.  Conditional outlier detection for clinical alerting.

Authors:  Milos Hauskrecht; Michal Valko; Iyad Batal; Gilles Clermont; Shyam Visweswaran; Gregory F Cooper
Journal:  AMIA Annu Symp Proc       Date:  2010-11-13

4.  Clinical time series prediction: Toward a hierarchical dynamical system framework.

Authors:  Zitao Liu; Milos Hauskrecht
Journal:  Artif Intell Med       Date:  2014-11-06       Impact factor: 5.326

5.  Learning Adaptive Forecasting Models from Irregularly Sampled Multivariate Clinical Data.

Authors:  Zitao Liu; Milos Hauskrecht
Journal:  Proc Conf AAAI Artif Intell       Date:  2016-02
  5 in total
  4 in total

1.  A Personalized Predictive Framework for Multivariate Clinical Time Series via Adaptive Model Selection.

Authors:  Zitao Liu; Milos Hauskrecht
Journal:  Proc ACM Int Conf Inf Knowl Manag       Date:  2017-11

2.  Methodological variations in lagged regression for detecting physiologic drug effects in EHR data.

Authors:  Matthew E Levine; David J Albers; George Hripcsak
Journal:  J Biomed Inform       Date:  2018-08-30       Impact factor: 6.317

3.  CGCNImp: a causal graph convolutional network for multivariate time series imputation.

Authors:  Caizheng Liu; Guangfan Cui; Shenghua Liu
Journal:  PeerJ Comput Sci       Date:  2022-04-29

4.  Modeling multivariate clinical event time-series with recurrent temporal mechanisms.

Authors:  Jeong Min Lee; Milos Hauskrecht
Journal:  Artif Intell Med       Date:  2021-01-18       Impact factor: 5.326

  4 in total

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